Machine Learning, Natural Language Processing, and the Electronic Health Record: Innovations in Mental Health Services Research

Psychiatr Serv. 2019 Apr 1;70(4):346-349. doi: 10.1176/appi.ps.201800401. Epub 2019 Feb 20.

Abstract

An unprecedented amount of clinical information is now available via electronic health records (EHRs). These massive data sets have stimulated opportunities to adapt computational approaches to track and identify target areas for quality improvement in mental health care. In this column, three key areas of EHR data science are described: EHR phenotyping, natural language processing, and predictive modeling. For each of these computational approaches, case examples are provided to illustrate their role in mental health services research. Together, adaptation of these methods underscores the need for standardization and transparency while recognizing the opportunities and challenges ahead.

Keywords: Computer patient tracking systems; Computer technology; electronic health record; informatics.

MeSH terms

  • Electronic Health Records / classification*
  • Health Services Research
  • Humans
  • Machine Learning*
  • Mental Health Services / trends*
  • Natural Language Processing*